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Uppsala University
Department of Business Studies
Bachelor Thesis
Fall 2013
Can we replace CAPM and the Three-Factor
model with Implied Cost of Capital?
Authors: Robert Löthman and Eric Pettersson
Supervisor: Joachim Landström
2014-01-15
2
Abstract
Researchers criticize predominant expected return models for being imprecise and based on
fundamentally flawed assumptions. This dissertation evaluates Implied Cost of Capital,
CAPM and the Three-Factor model abilities to estimate returns. We study each models
expected return association to realized return and test for abnormal returns. Our sample
covers the period 2000 to 2012 and includes 2916 US firms. We find that Implied Cost of
Capital has a stronger association with realized returns than CAPM and the Three-Factor
model. Implied Cost of Capital also has lower abnormal returns not accounted for by
expected returns. Our results suggest that we can replace CAPM and the Three-Factor model
with Implied Cost of Capital.
Keywords: Implied Cost of Capital, CAPM, Three-Factor model, expected returns, abnormal
returns
3
Contents 1. Introduction ......................................................................................................................................... 4
2. Expected return models ...................................................................................................................... 5
2.1 CAPM and the Three-Factor model ............................................................................................... 5
2.2 Implied Cost of Capital .................................................................................................................. 6
2.3 Summary........................................................................................................................................ 9
3. Method .............................................................................................................................................. 10
3.1. Estimating expected returns ...................................................................................................... 10
3.2 How to Evaluate Expected Return Models .................................................................................. 11
4. Results and analysis ........................................................................................................................... 12
4.1 Earnings forecasts ....................................................................................................................... 12
4.2 Evaluation of expected returns ................................................................................................... 15
5. Conclusion ......................................................................................................................................... 19
Appendix A - Models and definitions .................................................................................................... 21
Appendix B – Correlation matrix ........................................................................................................... 25
References ............................................................................................................................................. 26
4
1. Introduction
For half a century, research has focused on finding an expected return model (or cost of
equity capital model) for various applications in finance and accounting. Researchers criticize
the Capital Asset Pricing Model (CAPM) and the Three-Factor model for being imprecise and
based on fundamentally flawed assumptions (Fama and French, 1997; Elton, 1999; Fama and
French, 2002). The model presented in Hou, van Dijk and Zhang (2012) shows potential to be
a viable alternative. A comparison has to be made before Implied Cost of Capital (ICC) can
replace other expected return models. We examine how ICC compares to CAPM and the
Three-Factor model with the following research question: Can we replace CAPM and the
Three-Factor model with Implied Cost of Capital?
CAPM was introduced by Sharpe (1964) and Lintner (1965) through a theoretical attempt to
explain the relationship between risk and return (Sharpe, 1964, pp. 425-426). However, early
empirical results show that CAPM does not accurately predict return (Blume and Friend,
1973; Fama and French, 1996). The cumulative findings regarding CAPM’s performance are
summarized by Fama and French (2004, p.26) as “...the failure of the CAPM in empirical tests
implies that most applications of the model are invalid.” One possible explanation is that
return can be explained by several risk factors not considered by CAPM. Among these factors
are size (Banz, 1981) and book-to-market ratio (BE/ME) (Rosenberg, Reid and Lanstein,
1985). Fama and French (1993) introduces the Three-Factor model by applying size and
BE/ME factors to CAPM. Even with these alterations, Elton (1999) and Fama and French
(2002) indicate that CAPM and the Three-Factor model are fundamentally flawed.
Recent studies (e.g. Gordon and Gordon, 1997; Claus and Thomas, 2001; Gebhardt, Lee and
Swaminathan, 2001; Easton, 2004; Ohlson and Juettner-Nauroth, 2005; Hou et al., 2012)
focus on an alternative method for estimating returns, ICC. A firm’s ICC can be defined as the
markets’ discount rate of expected future cash-flows (Hou et al., 2012).
Hou et al. (2012) finds the model based ICC a viable option in estimating returns. The results
show that model-based ICC has predictive power of returns. Additionally, model-based ICC
outperforms analyst-based ICC when in terms of association with realized returns (Hou et al.,
5
2012, pp. 515). The article does not compare model-based ICC to CAPM or the Three-Factor
model. It is therefore difficult to assess the potential benefits when weighing between
expected return models.
The study proceeds as follows: First the section “Expected return models” describes and
defines existing research and models. Second, the methods and models applied in this study
are described in the section Method. Third, the section “Results and analysis” presents the
data and analysis accomplished through the research method. Lastly, the dissertation is
concluded and summarized in “Conclusion”.
2. Expected return models
2.1 CAPM and the Three-Factor model
From the theoretical findings in Sharpe (1964) and Lintner (1965) the following CAPM
(commonly referred to as the market model or the single-factor model) equation is
introduced:
( ) ( ( ) ) (1)
Where ( ) is the expected return, is the risk-free return, and ( ) is the expected
market return. is the abnormal return, is the responsiveness to the market return. is
the return not explained by other variables.
The Three-Factor model (2) applies similar assumptions as CAPM when estimating returns
but with two additional risk factors: size (SMB) and book-to-market ratio (HML) (Fama and
French, 1993). SMB (Small Minus Big) denotes the difference between the average return of
three small cap portfolios and the average return on three large cap portfolios. HML (High
Minus Low) denotes the difference between average return of two high B/M portfolios and
average return of two low B/M portfolios.
( ) ( ( ) ) ( ) ( ) (2)
Where, in addition to the CAPM assumptions, ( ) is the expected difference between
the small and big portfolios, ( ) is the expected difference between the high and low
6
B/M portfolios. is abnormal return, is the responsiveness to the market return, is the
responsiveness to SMB, and is the responsiveness to HML.
Both CAPM and the Three-Factor model rely on ex-post realized returns as a proxy for ex-
ante returns. This is criticized to be a noisy proxy (Elton, 1999; Fama and French, 2002). Elton
(1999) argues that one-time information surprises have substantial impact on realized
returns and that these surprises do not cancel out over time. Fama and French (2002) finds
that returns have consistently been higher than expected, further implying that errors do
not cancel out over time.
Fama and French (1997) examines the effects of this assumption on cost of equity estimates
and finds that estimates are imprecise. Large standard-errors are typical and are assumed to
be even larger when making firm level estimates (Fama and French, 1997). The errors exist
due to time varying effects in historical data. This results in imprecise estimates of factor
loadings (i.e. for CAPM and , , for the Three-Factor model). Imprecise estimates
exist regardless of sample period used. Additionally, the factor-risk premiums (i.e.
( ( ) ), ( ), and ( ) ) can vary considerably given the large standard-
errors and sample period. Pástor and Stambaugh (1999) confirms the uncertainty regarding
factor loadings. Fama and French (1997, pp. 154) summarizes return estimates as being
“woefully imprecise”. MacKinlay and Pástor (2000) finds it possible for factor-models to
perform well out of sample, and further optimization is required.
2.2 Implied Cost of Capital
To avoid the issues identified in Fama and French (1997), Gebhardt et al. (2001) suggests
ICC. Unlike CAPM and the Three-Factor model, ICC is not based on realized returns as a
proxy for future returns. Instead it is based on current stock prices and future forecasted
cash-flows. Recent research finds promising results when testing ICC in different settings.
Botosan, Plumlee and Wen (2011) finds positive association between ICC models and future
returns as well as firm level risk-characteristics. Lee, Ng and Swaminathan (2009) finds that
7
ICC better model expected return than realized return proxy models for international firms.
Hou et al. (2012) concludes that ICC has predictive power of realized returns.
ICC models can broadly be grouped into three categories: Gordon growth models, abnormal
earnings growth models, and residual income valuation models. As there is no consensus
over which is the most relevant ICC model, Hou et al. (2012) also use a five model composite
ICC. The models are Gordon (Gordon and Gordon, 1997), CT (Claus and Thomas, 2001), GLS
(Gebhardt et al. 2001), MPEG (Easton, 2004) and OJ (Ohlson and Juettner-Nauroth, 2005).
Gordon and Gordon (1997) builds upon issues in estimating returns and suggests the finite
horizon expected return model (Gordon). The Gordon model is based on the Gordon growth
model and is suggested as an alternative to CAPM. Hou et al. (2012) use the following
Gordon adaptation:
[ ]
(3)
Where Mt is the market value, Et[Et+1] is forecasted earnings, and R is the implied cost of
capital.
CT originates in Claus and Thomas (2001), finding the US market risk premium as lower than
previously attested. CT is a residual income model, which Claus and Thomas (2001) adapted
to avoid issues relating to the dividend growth model. Hou et al. (2012) use the following CT
adaptation:
∑ [( ) ]
( )
[( ) ]( )
( ) ( ) (4)
Where Bt is book equity,( ) is residual income, and g the risk free rate. R, Mt and
Et are applied the same way as for Gordon.
GLS is introduced by Gebhardt et al. (2001) as an alternate way of estimating the cost of
capital. Similarly to CT it is described as a residual income model used to generate the
market implied cost of capital. Hou et al. (2012) use the following GLS adaptation:
∑ [( ) ]
( )
[( ) ]
( ) (5)
Where R, Mt, Et, Bt and ROEt+k are applied the same way as for Gordon and CT.
8
Easton (2004) presents a modified price-earnings growth model (MPEG) that can obtain
expected rate of return. The model can be categorized as an abnormal earnings growth
model. Hou et al. (2012) use the following MPEG adaptation:
[ ] [ ] [ ]
(6)
Where Dt+1 is expected dividends. R, Mt and Et are applied the same way as for Gordon, CT
and GLS.
The OJ model produces earnings per share and earnings per share growth as depicted in
Ohlson and Juettner-Nauroth (2005). Similar to MPEG, the OJ model can be described as an
abnormal earnings growth model. Hou et al. (2012) use the following OJ adaptation:
√ [ ]
( ( )) (7)
(( ) [ ]
) (8)
Where g is the short-term growth rate and [ ] is expected dividends. R, Mt and Et are
applied the same way as for Gordon, CT, GLS and MPEG.
In order to supply the ICC models with earnings expectations, forecasts for each firm are
necessary. Hou et al. (2012) use a cross-sectional Regression model (9) and firm specific
accounting variables. The Regression model (9) utilizes previous 10-years of data from all
sample firms. Forecasts are generated up to 5-years ahead for each firm.
(9)
Where i denotes firm, t+ denotes the forecasted year. (Eit) is earnings, NegEit is an indicator
variable that equals 1 if earnings are negative and 0 if not, Dit is dividends, DDit is an indicator
variable that equals 1 if dividends are paid and 0 if not, Ait is total assets, and ACit is accruals.
Unlike Hou et al. (2012), previous ICC studies use analysts’ forecasts when estimating
earnings, thus introducing analysts’ bias to the models (Easton and Monahan, 2005). Analyst
bias implies that forecasts are unreliable and overly optimistic, likely due to incentives within
analysts’ employment. Abarbanell and Bushee (1997) and Francis, Olsson and Oswald (2000)
9
find substantial valuation errors when using analysts’ forecasts. Guay, Kothari and Shu
(2011) adjust earnings forecasts for analyst bias and find significant improvement in ICC
performance. Hou et al. (2012) finds that even after adjusting for analyst bias, the model-
based forecasts are preferable. Additionally, Lee, So and Wang (2010) finds that abnormal
earnings growth models perform better using analysts’ forecasts, whilst other ICC models
benefit from the earnings model.
The earnings model is still under academic refinement. Gerakos and Gramacy (2013) finds
that complex forecasting models with a large number of predictors perform worse than a
naive random walk model (lagged earnings) at the 1-year horizon. Li and Mohanram (2013)
suggests alternative forecasting models: the autoregressive earnings model and the residual
income valuation model. Both models outperform the Hou et al. (2012) model (9) in terms of
forecast accuracy and as basis for ICC estimates.
2.3 Summary
CAPM and the Three-Factor model have been subject of extensive empirical research in
estimating returns. Today CAPM appears to be the most commonly applied model
(Brotherson, Eades, Harris and Higgins, 2013). The Three-Factor model further develops
CAPM to improve return estimates. CAPM accounts for market risk while the Three-Factor
model also accounts for size and book-to-market ratio. Both expected return models have
fundamental flaws.
The ICC does not make the same assumptions as CAPM and the Three-Factor model. Hou et
al. (2012) presents a composite model that use 5 ICC models. Using Gordon, CT, GLS, MPEG
and OJ is a potential alternative to CAPM and the Three-Factor model. How ICC performs in
relation to CAPM and the Three-Factor model has not been tested. In the next section
“Method”, we explain how expected returns models are compared.
10
3. Method
3.1. Estimating expected returns
Our sample includes 2,916 actively traded firms that are members of either Nasdaq, NYSE or
NYSE MKT (formerly AMEX). All non-US firms, financial firms, non-common stocks, securities
with missing market data, and duplicate securities are excluded from this sample. As we
exclude securities with missing market data, all dead equities are removed from the sample.
Due to time restraints and limitations of Datastream, this sample selection has inherent
survivorship bias.
Figure 1: Timeline of data collection
We estimate returns at June 30th each year between 2000 and 2012 using ten return models.
The ICC models combine earnings coefficients from the cross-sectional earnings model (9)
from the previous ten years (t-10) and firm specific accounting variables observed at March
30th year t. The factor models are estimated using 1-year daily returns (t-1) as well as 5-years
weekly returns (t-5). We assume a 1-year buy-and-hold strategy and compare each models
expected return to the 1-year ahead realized return (t+1).
As illustrated in Figure 1, all ICC models require 10 years of accounting data prior to each
return estimate. Our sample period is 2000 to 2012, which requires additional data between
1990 and 2000. CAPM and the Three-Factor model are both estimated twice: first using 1-
year of daily return data and second using 5-years of weekly return data. All ICC data are
collected through Datastream. CAPM and the Three-Factor model use data from French
(2013) for returns of the market portfolio, Small-Minus-Big portfolios, and High-Minus-Low
June year t
Estimate expected return
5 or 1 year returns data for
CAPM and 3-factor June year t+1
Compare expected- to realized returns
Earnings model forecasting 10 years accounting data
Buy-and-hold 1 year
t-10
11
portfolios. All other return data are collected from Datastream. Ince and Porter (2006)
advice caution when drawing inferences using Datastream return data. We address this by
winsorizing extreme observations annually at the 99th percentile.
In June each year we compute expected returns using the following models: CAPM (1- and 5-
year), the Three-Factor model (1- and 5-year), Gordon, MPEG, OJ, CT, GLS and Composite
ICC. Detailed descriptions and variable definitions with corresponding Datastream
mnemonics for each model are presented in Appendix A. Following Hou et al. (2012) we
create a composite ICC estimate using the following model:
(10)
We only require one ICC model estimate for the composite ICC, in order to maximize
coverage. This method is in line with Hou et al. (2012) and given that a majority of
observations have more than one estimate available, it should not affect our results.
All earnings model (9) variables are winsorized annually at the 1st and 99th percentile.
Additionally, all expected returns are winsorized annually at the 1st and 99th percentile. As
illustrated in Figure 1, our buy-and-hold period is 1-year. Realized returns are observed 1-
year ahead of expected returns. Our risk free rate is the 1-year U.S Treasury Constant
Maturity, matching our buy-and-hold period.
3.2 How to Evaluate Expected Return Models
The preferable return model achieves best predictive power for future returns. We evaluate
return models’ out of sample performance using two commonly applied methods in the
literature (Barber and Lyon, 1997): a regression based analysis and a two sample t-test of
expected and realized returns. First, we perform a univariate regression between expected
return and realized return:
(11)
Where Realized Return is the 1-year buy-and-hold return and Expected Return is the
forecasted return using 1 of the 10 return models. is abnormal return and is the linear
correlation between expected and realized returns. An ideal model would have an -value of
0 and a -coefficient of 1. This would indicate a model that perfectly predicts future returns
12
with at 100%. This is not plausible given that other variables affect realized returns, for
example macroeconomic, information, and risk factors.
Second, we observe abnormal return for each expected return using an alternative definition
presented in Barber and Lyon (1997):
[ ] (12)
Where AR is abnormal return, Realized Return is the 1-year buy-and-hold return and
Expected Return is the forecasted return using 1 of the 10 return models. We do not test the
cumulative abnormal return as suggested by Barber and Lyon (1997) due to differences in
coverage between return models. Instead, we test the mean abnormal return through a two
sample t-test of the null hypothesis:
(13)
Where is the average abnormal return for 1 of the ICC models (Composite, Gordon,
MPEG, OJ, CT, or GLS) and is the average abnormal return for 1 of the factor
models (1-year CAPM, 5-year CAPM, the 1-year Three-Factor model, or the 5-year Three-
Factor model). We test each ICC model against each of the factor models for a total of 24 t-
tests. The null hypothesis is rejected at the 0.05 level of significance. If the null hypothesis is
rejected, the ICC model better predicts future returns.
4. Results and analysis
The results are presented in two parts. First the earnings forecasts are presented in order to
asses if they are comparable to Hou et al. (2012). Second, “Evaluation of Expected Returns”
presents expected returns association to realized returns and the abnormal returns
hypothesis test for each expected return model. We describe and analyze the results within
each section.
4.1 Earnings forecasts
Table 1 presents summary statistics (mean, median, select percentiles, standard deviation,
and number of observations) of the accounting variables in the earnings model (Equation 9).
13
All variables have notably larger values for mean than median. This implicates that there are
several large firms within our sample affecting the earnings model regression. Winsorizing
annually mitigates the risk of these outliers skewing the regression.
Table 1: Earnings model summary statistics
Mean 1% 25% Median 75% 99% STD Obs.
Earnings 130,952 -374,216 -1,396 12,045 74,040 2,621,881 494,574 48,320
Dividends 45,448 0 0 0 10,393 907,700 170,573 47,546
Assets 2,819,806 3,180 87,508 391449 1,746,397 42,907,200 7,462,417 47,876
Accruals -149,043 -2,487,074 -86,600 -15400 -1,127 147,979 449,729 46,735
Summary statistics of the quantitative accounting variables used in the earnings-model
(Equation 9) during the sample period 1990-2012. All values are expressed in $-thousands.
Earnings is net income before extraordinary items, Assets are total assets, Dividends are
dividends paid, and Accruals are calculated as the difference between earnings and net cash
flows from operations.
Our sample consists of (on average) larger values for all earnings model variables compared
to Hou et al. (2012)’s sample. Sample period differences are likely the cause of this (1963-
2009 and 1990-2012). Differences in variable operationalization and databases used also
affect sample values.
Table 2 reports the median coefficients from the earnings model (Equation 9) estimated
annually from 2000 to 2012. We also report coefficient significance (p-value) and .
Earnings are highly persistent when forecasting future earnings, in line with Hou and
Robinson (2006) results. Firms with higher dividends and firms with lower accruals tend to
have higher future earnings. Asset coefficient does not maintain the same sign across
different forecast horizons, implicating that large firms have relatively higher earnings only
for 2- to 5-year ahead earnings. Neither of the indicator variables are significant for any
forecast horizon. The intercept increases each forecasted year, implicating that future
earnings improve regardless of firm characteristics. However, it is only significant for 4- and
5-year ahead earnings.
14
The earnings model median varies between the forecasted years, from 75.7% for 1-year
ahead earnings to 62.3% for 5-year ahead earnings. These values show that the earnings
model captures a considerable part of the variation in future earnings across our sample
firms.
Table 2: Earnings model coefficients
Year
T+1 209.8
0.923
-0.0011
0.040
0.4100
0.000
1,560.8
0.541
0.7358
0.000
-679.2
0.845
-0.2045
0.000
75.7%
T+2 3,431.0
0.206
0.0023
0.001
0.4740
0.000
5,015.0
0.194
0.6138
0.000
-3848.2
0.424
-0.2939
0.000
68.2%
T+3 5,154.3
0.093
0.0017
0.000
0.5246
0.000
5,668.6
0.209
0.6253
0.000
-2307.2
0.624
-0.3585
0.000
66.1%
T+4 8,850.0
0.019
0.0045
0.000
0.5345
0.000
6,500.6
0.194
0.6439
0.000
-934.4
0.860
-0.3572
0.000
64.3%
T+5 14,992.4
0.000
0.0067
0.000
0.5381
0.000
5,476.4
0.313
0.6992
0.000
1341.0
0.863
-0.3729
0.000
62.3%
Median coefficients used for model-based forecasts with p-values in italic and
for 1 to 5 years-ahead forecasts. Is the intercept. are total assets. are dividends.
is an indicator variable that equals 1 if dividends are paid and 0 if not. is earnings
before extraordinary items. is an indicator variable that equals 1 if earnings is
negative and 0 if not. is accruals.
Our coefficients are overall comparable to Hou et al. (2012), but have two notable
differences. First, the intercept varies substantially in value and significance between our
studies. Our intercept is positive across all horizons, but only significant for 4- and 5-year
ahead earnings. Hou et al. (2012) intercept is negative across all horizons but only significant
for 1- and 2-year ahead earnings. Second, Hou et al. (2012) finds the negative earnings
indicator variable positive and significant across all horizons while we find it varying and
insignificant across different horizons.
Hou et al. (2012) captures a larger variation in future earnings, 86%, 81%, and 78%
compared with 75.7%, 68.2%, and 66.1% for 1-, 2-, and 3-year ahead earnings. We assume
15
similar results for 4- and 5-year ahead earnings. Possible causes are differences in sample
period and variable operationalization. However, overall the results for the earnings model
are comparable and we conclude that our ICC estimates are representative of Hou et al.
(2012).
4.2 Evaluation of expected returns
Table 3 presents descriptive statistics (observations, mean, median, and standard deviation)
of the return estimates for each model used in this study and the 1-year buy-and-hold
return. The composite model has the best coverage due to only requiring one ICC estimate.
If we were to require an observation to have all five ICC estimates, coverage would instead
be the lowest. Number of ICC model observations varies substantially due to the differences
in data requirements and underlying assumptions. The difference between a 1 and 5-year
sample period for the factor models is substantial, 30,363 compared to 25,079 observations.
This difference would be even larger without the inherent survivorship bias. In total, we
make 279,035 return estimations over the years 2000-2012.
Table 3: Return models’ descriptive statistics
Observations Mean Median Std. Dev
Composite 30,372 0.095 0.075 0.111
Gordon 30,368 0.018 0.042 0.216
MPEG 23,580 0.187 0.133 0.187
OJ 30,363 0.102 0.091 0.260
CT 26,913 0.115 0.071 0.198
GLS 27,257 0.098 0.083 0.074
CAPM 1-year 30,012 0.056 0.059 0.193
CAPM 5-year 25,079 0.090 0.087 0.224
3-Factor 1-year 30,012 0.076 0.068 0.251
3-Factor 5-year 25,079 0.080 0.071 0.301
Realized return 31,174 0.162 0.072 0.634
Number of observations, mean, median, and standard deviation for the ICC estimates
(Composite, Gordon, MPEG, OJ, CT, and GLS), CAPM (1-year and 5-year), the Three-Factor
model (1-year and 5-year), and the realized return (1-year buy-and-hold return). Sample
period 2000-2012.
16
Mean, median, and standard deviation for returns differ considerably between models, for
example: Gordon’s mean expected return is 1.8% whilst MPEG’s is 18.7%. This implicates
that Fama and French (1997) findings that return estimates vary substantially between
CAPM and the Three-Factor model also hold true for ICC models.
A full correlation matrix between the return estimates is presented in Appendix B which
further enlightens this point. Gordon is the most deviant ICC model and has a negative
correlation with MPEG and CT. CAPM and the Three-Factor model estimates all highly
correlate with each other, regardless of the sample period for the coefficients. They are
negatively correlated with all ICC models, except Gordon. Unlike Hou et al. (2012), we do not
exclude negative ICC estimates. This explains why our results deviate substantially.
We find that all ICC models are better correlated with realized returns than any CAPM or the
Three-Factor model estimation. This indicates that any ICC model would be preferable to
CAPM or the Three-Factor model when estimating returns. GLS is best correlated (0.161)
followed by MPEG (0.153) and Composite (0.149). Of CAPM and the Three-Factor model
estimations, only the 5-year Three-Factor model has a positive correlation with realized
returns whilst the rest has negative correlation. Further, we examine the return models’
association to realized returns using a univariate regression.
Table 4 presents the coefficients, significance, and for the return models. All ICC models
have lower abnormal returns ( ) than CAPM and the Three-Factor model. GLS has the lowest
abnormal return (4.3%) followed by MPEG (6.2%) and Composite (8.1%). Gordon performs
worst of the ICC models, but still results in lower abnormal returns than CAPM and the
Three-Factor model. The Three-Factor model is better than CAPM in terms of abnormal
return, although differences are small (17.3% and 17.6% compared 16.9% and 16.3%). CAPM
benefits from 1-year daily return data whilst the Three-Factor model performs better using
5-years weekly returns.
17
Table 4: Return regression
Composite 0.081
0.000
0.833
0.000
2.2%
Gordon 0,158
0.000
0.137
0.000
0.2%
MPEG 0.062
0.000
0.523
0.000
2.3%
OJ 0.143
0.000
0.167
0.000
0.5%
CT 0.127
0.000
0.389
0.000
1.6%
GLS 0.043
0.000
1.307
0.000
2.6%
CAPM 1-year 0.173
0.000
-0.145
0.000
0.2%
CAPM 5-year 0.176
0.000
-0.103
0.000
0.1%
3-factor 1-year 0.169
0.000
-0.049
0.001
0.0%
3-factor 5-year 0.163
0.000
0.048
0.000
0.1%
Regression coefficients with t-stat p-values (in italic) and for the ICC estimates
(Composite, Gordon, MPEG, OJ, CT, and GLS), CAPM (1-year and 5-year), and the Three-
Factor model (1-year and 5-year). Sample period is 2000-2012.
The -coefficient in Table 4 is under 1 for all estimation models except GLS. This indicates
that all models (except GLS) tend to overestimate future returns and need to be
systematically adjusted downwards. GLS tends to underestimate future returns and would
benefit from being adjusted upwards. From a conservative accounting and valuation
perspective, GLS might be preferable. Both CAPM estimations and the 1-year Three-Factor
model all have negative -coefficients. This confirms the results from the correlation matrix
(Appendix B) that they do not seem to have predictive power for future returns. The -
coefficients actually indicate that the higher CAPM or the 1-year Three-Factor model
estimate, the lower realized returns.
18
We find low -values for all models, but the present is primarily distributed among the
models with relevant - and -coefficients. In order to increase the explanatory power of the
estimates, we would need to include other variables affecting realized returns. Such
variables include for example: information surprises or macroeconomic factors. Another
aspect is lacking performance of the earnings forecasting model, as indicated by Gerakos and
Gramacy (2013). A better forecasting model would produce more accurate estimates. For
additional robustness of our results, we test an alternative abnormal returns definition and
evaluation method.
Table 5: Abnormal return t-test
CAPM 1-year CAPM 5-year 3-factor 1-year 3-factor 5-year
Composite 0.411 -9.40
0.000
-5.59
0.000
-13.49
0.000
-9.47
0.000
Gordon 0.419 -6.90
0.000
-3.33
0.000
-10.79
0.000
-7.06
0.000
MPEG 0.443 -1.11
0.134
2.29
0.989
-4.97
0.000
-1.45
0.074
OJ 0.439 -2.12
0.017
1.41
0.921
-6.12
0.000
-2.44
0.007
CT 0.401 -11.45
0.000
-7.69
0.000
-15.43
0.000
-11.46
0.000
GLS 0.390 -14.39
0.000
-10.50
0.000
-18.42
0.000
-14.29
0.000
T-stat and p-value of the one-tailed T-test between return models’ abnormal returns. The null
hypothesis is rejected at the 0.05 level of significance. denotes the average abnormal
return for each of the ICC models (Composite, Gordon, MPEG, OJ, CT, and GLS) and
denotes the average abnormal return for each of the factor models (CAPM 1-year, CAPM 5-
year, 3-factor 1-year, and 3-factor 5-year).
We further examine the return models’ predictive power for realized returns using the
Barber and Lyon (1997) definition of abnormal returns. Table 5 presents the results of the
two sample t-test between average abnormal return for the ICC models and the factor
models. We seek to reject the null hypothesis that the ICC models produce larger than or
equal to abnormal returns at the 0.05 level of significance.
19
We find that four of the ICC models (Composite, Gordon, CT, and GLS) result in significantly
lower abnormal returns than all factor-model alternatives. GLS has the lowest average
abnormal return of all models. MPEG and OJ are both unable to produce significantly lower
abnormal returns than CAPM 5-year: Additionally, MPEG is not significantly lower than
CAPM 1-year or the Three-Factor model 5-year. CAPM 5-year results in the lowest average
abnormal return among the factor models (although this difference is not tested
statistically). The results deviate substantially in some parts compared to Table 4 due to the
different abnormal return definitions and measurements methods. They are however
conclusive in the fact that ICC models almost always outperform factor-model counterparts
in terms of abnormal return. The t-test further highlights the differences between return
models. The return model used impacts the results and possible conclusions in studies.
5. Conclusion
CAPM and the Three-Factor model are the most commonly applied return models. However,
research criticizes both models for being imprecise and based on fundamentally flawed
assumptions. Recent research therefore focuses on finding an alternative return model. ICC
shows potential with significant predictive power of future realized returns in several
studies. However, ICC has not been evaluated in comparison to CAPM and the Three-Factor
model. We examine the relative performance of the return models through the research
question: Can we replace CAPM and the Three-Factor model with Implied Cost of Capital?
We estimate returns for 2916 firms actively traded on the Nasdaq, NYSE or NYSE MKT from
2000 to 2012. We present the results of 6 different ICC models (Composite, Gordon, MPEG,
OJ, CT, and GLS), 2 CAPM variants (1-year and 5-year), and 2 Three-Factor model variants (1-
year and 5-year) for a total of 279,035 estimations. We evaluate each return model by
observing their abnormal return using two commonly applied definitions. The model with
lowest abnormal return is the model with best predictive power over future returns.
20
In the regression-based test (Table 4), all ICC models outperform CAPM and Three-Factor
models substantially. ICC models have lower abnormal return and better explain variation in
future returns. GLS performs the best with an abnormal return at 4.3% whilst the best factor
model is the 5-year Three-Factor model with 16.3%. Other factor models even show a
negative correlation with realized returns. This indicates that they have severely lacking or
no predictive power at all over future returns. We also test if ICC results in lower average
abnormal return than CAPM and the Three-Factor model using an alternative abnormal
return definition (Table 5). We find that four of the ICC models (Composite, Gordon, CT, and
GLS) produce on average significantly lower abnormal returns than any CAPM or Three-
Factor model variant. Both abnormal-earnings growth models (MPEG and OJ) are
outperformed by at least one of the factor-models.
We find it possible to replace CAPM and the Three Factor model with ICC. Our results
conclude that ICC generally outperforms CAPM and the Three-Factor model and has better
predictive power of future returns. Therefore, we recommend researchers and professionals
to adapt an ICC model when estimating returns. We confirm Fama and French (1997)
findings that different return models vary substantially in estimating returns.
However, our results should be interpreted with caution. Our sample has inherent
survivorship bias and we draw inferences using Datastream return data. Hou et al. (2012)
uses Compustat data and does not operationalize accounting variables. Thus, comparability
between the studies can be questioned. With these limitations in mind, our overall findings
are in accordance with previous research.
Furthermore, future research should include a hedged portfolio test to indicate how ICC
estimates perform as a basis for investment strategy. Improvements to the earnings forecast
model is important for future research, whereas better forecasts could yield more accurate
returns estimates.
21
Appendix A - Models and definitions In this appendix we describe the models used and define the variables included. Datastream mnemonics for each variable is listed in for replicability. E[...] denotes expectations for the variable in question made in year t.
Earnings forecast model
Variable Definition Datastream mnemonic
Earnings before extraordinary items ( =1 to 5) WC01551
Ai,t Total assets WC02999
Di,t Common dividends provided for or paid WC18192
DDi,t Dummy variable that equals 1 for dividend payers and 0 otherwise WC18192
NegEi,t Dummy variable that equals 1 if earnings is negative and 0 otherwise WC01551
ACi,t Accruals. Calculated using the cash-flow statement method: Earnings before extraordinary items less Net cash flow from operating activities.
WC04860-WC01551
GLS
∑ [( ) ]
( )
[( ) ]
( )
Variable Definition Datastream mnemonic
R Implied Cost of Capital
Mt Market equity in year t MVC
Bt Book equity in year t WC03501
Bt+k Book equity is forecasted using clean surplus accounting (Bt+k = Bt+k-
1+Et+k-Dt+k). Where Et+k is the earnings forecast for year t+k, Dt+k is dividends forecasted for year t+k using current dividend payout ratio (if positive earnings) and current dividends divided by Total Assets * 0,06 (if negative earnings)
WC03501 See earnings forecast model WC18192/WC01751 alternatively: WC18192/WC02999*0,06
ROEt+(1-3) The expected return on equity is determined using the earnings forecast for year t+k divided by the forecasted Common equity (Bt+k, as described above)
See earnings forecast model and the Bt+k variable above.
ROEt+(4-
12) After t+3, the expected ROE mean-reverts to the industry median (becoming perpetuity at t+12).
22
CT
∑ [( ) ]
( )
[( ) ]( )
( ) ( )
Variable Definition Datastream mnemonic
R Implied Cost of capital
Mt Market equity in year t MVC
Bt Book equity in year t WC03501
Bt+k Book equity is forecasted using clean surplus accounting (Bt+k = Bt+k-1+Et+k-Dt+k). Where Et+k is the earnings forecast for year t+k, Dt+k is dividends forecasted for year t+k using current dividend payout ratio (if positive earnings) and current dividends divided by Total Assets * 0,06 (if negative earnings)
ROEt+k The expected return on equity is determined using the earnings forecast for year t+k divided by the forecasted Common equity (Bt+k, as described above)
g Set to the current risk-free rate (1-year U.S Treasury Constant Maturity) minus 3%. FRTCM1Y
OJ
√ [ ]
( ( ))
Variable Definition Datastream mnemonic
R Implied Cost of Capital -
Mt Market equity MVC
Et+1 Model-based earnings forecast for years t+1 and t+2 See earnings forecast model
A See below -
g Short-term growth rate. See below. -
The abnormal earnings perpetual growth rate beyond the forecast horizon. It is defined as the current risk-free rate (1-year U.S Treasury Constant Maturity) minus 3%.
FRTCM1Y
23
OJ (continues)
(( ) [ ]
)
Variable Definition Datastream mnemonic
The abnormal earnings perpetual growth rate beyond the forecast horizon. It is defined as the current risk-free rate (1-year U.S Treasury Constant Maturity) minus 3%.
FRTCM1Y
Dt+1 Expected dividends in year t+1. Estimated using current dividend payout ratio (current dividends/earnings available for dividends) if earnings is positive. If earnings is negative, it is estimated using current dividends divided by total assets * 0,06.
WC18192/WC01751 alternatively: WC18192/WC02999*0,06
Mt Market equity in year t MVC
( [ ] [ ]
[ ] [ ] [ ]
[ ])
Variable Definition Datastream mnemonic
Et+(1-5) Model-based earnings forecast for years t+1 to t+5 See earnings forecast model
MPEG
[ ] [ ] [ ]
Variable Definition Datastream mnemonic
R Implied Cost of Capital -
Mt Market equity in year t MVC
Et+(1,2) Model-based earnings forecast for years t+1 and t+2 See earnings forecast model
Dt+1 Expected dividends in year t+1. Estimated using current dividend payout ratio (current dividends/earnings available for dividends) if earnings is positive. If earnings is negative, it is estimated using current dividends divided by total assets * 0,06.
WC18192/WC01751 alternatively: WC18192/WC02999*0,06
24
GORDON
[ ]
Variable Definition Datastream mnemonic
R Implied Cost of Capital -
Mt Market equity in year t MVC
Et+1 Model-based earnings forecast for year t+1 See earnings forecast model
CAPM/Three-Factor model CAPM
( ) ( ( ) )
( )
Three-Factor model
( ) ( ( ) ) ( ) ( )
( )
Variable Definition Datastream mnemonic
Rt Total return of the stock. Measured as the change in total return index (%). RI
RFt Risk-free rate. Defined as the 1-year U.S Treasury Constant Maturity FRTCM1Y
RMt Market return. Defined as the average return of all CRSP firms listed on NYSE, Amex, and Nasdaq compiled by French (2013).
-
SMB The difference between small cap and large cap portfolio returns. Consisting of all CRSP firms listed on NYSE, Amex, and Nasdaq compiled by French (2013).
-
HML The difference between growth-stocks and value-stocks portfolio returns. Consisting of all CRSP firms listed on NYSE, Amex, and Nasdaq compiled by French (2013).
-
25
Appendix B – Correlation matrix
Table 6: Correlation matrix Composite Gordon MPEG OJ CT GLS 1yCAPM 5yCAPM 3f 1y 3f 1y
Returns 0,149
0,000
0,047
0,000
0,153
0,000
0,070
0,000
0,128
0,000
0,161
0,000
-0,045
0,000
-0,039
0,000
-0,020
0,001
0,024
0,000
Composite 0,486
0,000
0,607
0,000
0,714
0,000
0,538
0,000
0,620
0,000
-0,035
0,000
-0,059
0,000
-0,013
0,031
-0,001
0,836
Gordon -0,025
0,000
0,178
0,000
-0,155
0,000
0,151
0,000
0,082
0,000
0,042
0,000
0,092
0,000
0,056
0,000
MPEG 0,156
0,000
0,461
0,000
0,615
0,000
-0,089
0,000
-0,081
0,000
-0,085
0,000
-0,026
0,000
OJ 0,160
0,000
0,234
0,000
-0,013
0,025
-0,027
0,000
-0,001
0,895
-0,002
0,808
CT 0,428
0,000
-0,073
0,000
-0,066
0,000
-0,063
0,000
-0,024
0,000
GLS -0,068
0,000
-0,067
0,000
-0,053
0,000
-0,017
0,011
CAPM 1y 0,871
0,000
0,739
0,000
0,670
0,000
CAPM 5y 0,630
0,000
0,779
0,000
3f 1y 0,626
0,000
Correlation and significance (p-value for the ICC estimates (Composite, Gordon, MPEG, OJ,
CT, and GLS), CAPM (1-year and 5-year), the Three-Factor model (1-year and 5-year), and the
realized return (1-year buy-and-hold return). Significance is tested at 0.05 level of
significance. Sample period is 2000-2012. 3-f denotes the Three-Factor model.
26
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